Towards Fair Graph Neural Networks via Graph Counterfactual

被引:9
|
作者
Guo, Zhimeng [1 ]
Li, Jialiang [2 ]
Xiao, Teng [1 ]
Ma, Yao [3 ]
Wang, Suhang [1 ]
机构
[1] Penn State Univ, University Pk, PA 16802 USA
[2] New Jersey Inst Technol, Newark, NJ USA
[3] Rensselaer Polytech Inst, Troy, NY USA
来源
PROCEEDINGS OF THE 32ND ACM INTERNATIONAL CONFERENCE ON INFORMATION AND KNOWLEDGE MANAGEMENT, CIKM 2023 | 2023年
基金
美国国家科学基金会;
关键词
Graph neural networks; Counterfactual fairness; Causal learning;
D O I
10.1145/3583780.3615092
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Graph neural networks have shown great ability in representation (GNNs) learning on graphs, facilitating various tasks. Despite their great performance in modeling graphs, recent works show that GNNs tend to inherit and amplify the bias from training data, causing concerns of the adoption of GNNs in high-stake scenarios. Hence, many efforts have been taken for fairness-aware GNNs. However, most existing fair GNNs learn fair node representations by adopting statistical fairness notions, which may fail to alleviate bias in the presence of statistical anomalies. Motivated by causal theory, there are several attempts utilizing graph counterfactual fairness to mitigate root causes of unfairness. However, these methods suffer from non-realistic counterfactuals obtained by perturbation or generation. In this paper, we take a causal view on fair graph learning problem. Guided by the casual analysis, we propose a novel framework CAF, which can select counterfactuals from training data to avoid non-realistic counterfactuals and adopt selected counterfactuals to learn fair node representations for node classification task. Extensive experiments on synthetic and real-world datasets show the effectiveness of CAF. Our code is available at https://github.com/TimeLovercc/CAF- GNN.
引用
收藏
页码:669 / 678
页数:10
相关论文
共 50 条
  • [41] Long-tailed graph neural networks via graph structure learning for node classification
    Lin, Junchao
    Wan, Yuan
    Xu, Jingwen
    Qi, Xingchen
    APPLIED INTELLIGENCE, 2023, 53 (17) : 20206 - 20222
  • [42] Graph Unrolling Networks: Interpretable Neural Networks for Graph Signal Denoising
    Chen, Siheng
    Eldar, Yonina C.
    Zhao, Lingxiao
    IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2021, 69 : 3699 - 3713
  • [43] Neural Pooling for Graph Neural Networks
    Harsha, Sai Sree
    Mishra, Deepak
    PATTERN RECOGNITION AND MACHINE INTELLIGENCE, PREMI 2021, 2024, 13102 : 171 - 180
  • [44] VisGNN: Personalized Visualization Recommendation via Graph Neural Networks
    Ojo, Fayokemi
    Rossi, Ryan A.
    Hoffswell, Jane
    Guo, Shunan
    Du, Fan
    Kim, Sungchul
    Xiao, Chang
    Koh, Eunyee
    PROCEEDINGS OF THE ACM WEB CONFERENCE 2022 (WWW'22), 2022, : 2810 - 2818
  • [45] Robust Graph Neural Networks via Probabilistic Lipschitz Constraints
    Arghal, Raghu
    Lei, Eric
    Bidokhti, Shirin Saeedi
    LEARNING FOR DYNAMICS AND CONTROL CONFERENCE, VOL 168, 2022, 168
  • [46] Factor Graph Neural Networks
    Zhang, Zhen
    Dupty, Mohammed Haroon
    Wu, Fan
    Shi, Javen Qinfeng
    Lee, Wee Sun
    JOURNAL OF MACHINE LEARNING RESEARCH, 2023, 24
  • [47] Torsion Graph Neural Networks
    Shen, Cong
    Liu, Xiang
    Luo, Jiawei
    Xia, Kelin
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2025, 47 (04) : 2946 - 2956
  • [48] Learning Stable Graph Neural Networks via Spectral Regularization
    Gao, Zhan
    Isufi, Elvin
    2022 56TH ASILOMAR CONFERENCE ON SIGNALS, SYSTEMS, AND COMPUTERS, 2022, : 361 - 365
  • [49] Bayesian Graph Convolutional Neural Networks via Tempered MCMC
    Chandra, Rohitash
    Bhagat, Ayush
    Maharana, Manavendra
    Krivitsky, Pavel N.
    IEEE ACCESS, 2021, 9 : 130353 - 130365
  • [50] DropAGG: Robust Graph Neural Networks via Drop Aggregation
    Jiang, Bo
    Chen, Yong
    Wang, Beibei
    Xu, Haiyun
    Luo, Bin
    NEURAL NETWORKS, 2023, 163 : 65 - 74